Eigenvector Synchronization, Graph Rigidity and the Molecule Problem
Mihai Cucuringu, Amit Singer, David Cowburn

TL;DR
This paper introduces 3D-ASAP, a robust, divide-and-conquer algorithm for 3D graph realization from noisy, sparse distance data, with applications in structural biology and sensor networks.
Contribution
The paper presents the novel 3D-ASAP and 3D-SP-ASAP algorithms for global 3D graph realization, integrating local embeddings and molecular information, outperforming existing methods.
Findings
Robust to high noise levels in distance measurements.
Effective with sparse and limited connectivity graphs.
Outperforms comparable state-of-the-art algorithms.
Abstract
The graph realization problem has received a great deal of attention in recent years, due to its importance in applications such as wireless sensor networks and structural biology. In this paper, we extend on previous work and propose the 3D-ASAP algorithm, for the graph realization problem in , given a sparse and noisy set of distance measurements. 3D-ASAP is a divide and conquer, non-incremental and non-iterative algorithm, which integrates local distance information into a global structure determination. Our approach starts with identifying, for every node, a subgraph of its 1-hop neighborhood graph, which can be accurately embedded in its own coordinate system. In the noise-free case, the computed coordinates of the sensors in each patch must agree with their global positioning up to some unknown rigid motion, that is, up to translation, rotation and possibly…
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